Artificial Intelligence Lab, Department of MIS, University of ArizonaThis research examined the applicability of using a neural network approach to analyze population pharmacokinetic data. Such data were collected retrospectively from pediatric patients who had received tobramycin for the treatment of bacterial infection. The information collected included patient-related demographic variables (age, weight, gender, and other underlying illness), the individualâ s dosing regimens (dose and dosing interval), time of blood drawn, and the resulting tobramycin concentration. Neural networks were trained with this information to capture the relationships between the plasma tobramycin levels and the following factors: patient-related demographic f...
During the development of a pharmaceutical formulation, a powerful tool is needed to extract the key...
Summary: Forecasting pharmacokinetics (PK) for individual patients is a fundamental problem in clini...
Neural networks are increasingly being seen as an addition to the statistics toolkit which should be...
Artificial Intelligence Lab, Department of MIS, University of ArizonaPredicting blood concentration ...
Nonlinear Mixed effect models are often used to describe population pharmacokinetics (PK) and Pharma...
This work presents a pharmacodynamic population analysis in chronic renal failure patients using Art...
High-throughput technologies such as DNA/RNA microarrays, mass spectrometry and protein chips are cr...
The ability to generate predictive models linking the in vitro assessment of pharmaceutical products...
Poor pharmacokinetic and toxicity profiles are major reasons for the low rate of advancing lead drug...
Abstract We developed a method to apply artificial neural networks (ANNs) for predicting time‐series...
ABSTRACT Purpose. The purpose of this work was to predict plasma peak and trough levels of an aminog...
Background: Population pharmacokinetic evaluations have been widely used in neonatal pharmacokinetic...
When estimating in vivo body composition or combining such estimates with other results, multiple va...
Early pharmacokinetic optimisation is a key principle in drug discovery and development. Modeling ab...
For the prediction of decay concentration profiles of the p-boronophenylalanine (BPA) in blood durin...
During the development of a pharmaceutical formulation, a powerful tool is needed to extract the key...
Summary: Forecasting pharmacokinetics (PK) for individual patients is a fundamental problem in clini...
Neural networks are increasingly being seen as an addition to the statistics toolkit which should be...
Artificial Intelligence Lab, Department of MIS, University of ArizonaPredicting blood concentration ...
Nonlinear Mixed effect models are often used to describe population pharmacokinetics (PK) and Pharma...
This work presents a pharmacodynamic population analysis in chronic renal failure patients using Art...
High-throughput technologies such as DNA/RNA microarrays, mass spectrometry and protein chips are cr...
The ability to generate predictive models linking the in vitro assessment of pharmaceutical products...
Poor pharmacokinetic and toxicity profiles are major reasons for the low rate of advancing lead drug...
Abstract We developed a method to apply artificial neural networks (ANNs) for predicting time‐series...
ABSTRACT Purpose. The purpose of this work was to predict plasma peak and trough levels of an aminog...
Background: Population pharmacokinetic evaluations have been widely used in neonatal pharmacokinetic...
When estimating in vivo body composition or combining such estimates with other results, multiple va...
Early pharmacokinetic optimisation is a key principle in drug discovery and development. Modeling ab...
For the prediction of decay concentration profiles of the p-boronophenylalanine (BPA) in blood durin...
During the development of a pharmaceutical formulation, a powerful tool is needed to extract the key...
Summary: Forecasting pharmacokinetics (PK) for individual patients is a fundamental problem in clini...
Neural networks are increasingly being seen as an addition to the statistics toolkit which should be...